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Poster

On the Benefits of Attribute-Driven Graph Domain Adaptation

Ruiyi Fang · Bingheng Li · zhao kang · Qiuhao Zeng · Nima Hosseini Dashtbayaz · Ruizhi Pu · Charles Ling · Boyu Wang

Hall 3 + Hall 2B #631
[ ]
Thu 24 Apr 7 p.m. PDT — 9:30 p.m. PDT

Abstract:

Graph Domain Adaptation (GDA) addresses a pressing challenge in cross-network learning, particularly pertinent due to the absence of labeled data in real-world graph datasets. Recent studies attempted to learn domain invariant representations by eliminating structural shifts between graphs. In this work, we show that existing methodologies have overlooked the significance of the graph node attribute, a pivotal factor for graph domain alignment. Specifically, we first reveal the impact of node attributes for GDA by theoretically proving that in addition to the graph structural divergence between the domains, the node attribute discrepancy also plays a critical role in GDA. Moreover, we also empirically show that the attribute shift is more substantial than the topology shift, which further underscore the importance of node attribute alignment in GDA. Inspired by this finding, a novel cross-channel module is developed to fuse and align both views between the source and target graphs for GDA. Experimental results on a variety of benchmark verify the effectiveness of our method.

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